We present CAISAR, an open-source platform under active development for the characterization of AI systems' robustness and safety. CAISAR provides a unified entry point for defining verification problems by using WhyML, the mature and expressive language of the Why3 verification platform. Moreover, CAISAR orchestrates and composes state-of-the-art machine learning verification tools which, individually, are not able to efficiently handle all problems but, collectively, can cover a growing number of properties. Our aim is to assist, on the one hand, the V\&V process by reducing the burden of choosing the methodology tailored to a given verification problem, and on the other hand the tools developers by factorizing useful features-visualization, report generation, property description-in one platform. CAISAR will soon be available at https://git.frama-c.com/pub/caisar.
@article{arxiv.2206.03044,
title = {CAISAR: A platform for Characterizing Artificial Intelligence Safety and Robustness},
author = {Julien Girard-Satabin and Michele Alberti and François Bobot and Zakaria Chihani and Augustin Lemesle},
journal= {arXiv preprint arXiv:2206.03044},
year = {2022}
}